Theo dõi
Miroslav Dudik
Miroslav Dudik
Microsoft Research
Email được xác minh tại microsoft.com
Tiêu đề
Trích dẫn bởi
Trích dẫn bởi
Năm
Novel methods improve prediction of species’ distributions from occurrence data
J Elith*, C H. Graham*, R P. Anderson, M Dudík, S Ferrier, A Guisan, ...
Ecography 29 (2), 129-151, 2006
99342006
Modeling of species distributions with Maxent: new extensions and a comprehensive evaluation
SJ Phillips, M Dudík
Ecography 31 (2), 161-175, 2008
78332008
A statistical explanation of MaxEnt for ecologists
J Elith, SJ Phillips, T Hastie, M Dudík, YE Chee, CJ Yates
Diversity and distributions 17 (1), 43-57, 2011
71472011
A maximum entropy approach to species distribution modeling
SJ Phillips, M Dudík, RE Schapire
Proceedings of the twenty-first international conference on Machine learning, 83, 2004
31932004
Sample selection bias and presence‐only distribution models: implications for background and pseudo‐absence data
SJ Phillips, M Dudík, J Elith, CH Graham, A Lehmann, J Leathwick, ...
Ecological applications 19 (1), 181-197, 2009
30712009
Opening the black box: An open‐source release of Maxent
SJ Phillips, RP Anderson, M Dudík, RE Schapire, ME Blair
Ecography 40 (7), 887-893, 2017
21332017
A reductions approach to fair classification
A Agarwal, A Beygelzimer, M Dudík, J Langford, H Wallach
ICML 2018, 2018
11392018
Maxent software for modeling species niches and distributions v. 3.4.1
SJ Phillips, M Dudík, RE Schapire
URL: https://biodiversityinformatics.amnh.org/open_source/maxent, 2017
947*2017
Doubly robust policy evaluation and learning
M Dudik, J Langford, L Li
ICML 2011, 2011
8962011
Improving fairness in machine learning systems: What do industry practitioners need?
K Holstein, J Wortman Vaughan, H Daumé III, M Dudik, H Wallach
Proceedings of the 2019 CHI conference on human factors in computing systems …, 2019
7782019
Doubly robust policy evaluation and optimization
M Dudík, D Erhan, J Langford, L Li
4732014
A reliable effective terascale linear learning system
A Agarwal, O Chapelle, M Dudik, J Langford
Journal of Machine Learning Research 15, 2014
4452014
Fairlearn: A toolkit for assessing and improving fairness in AI
S Bird, M Dudík, R Edgar, B Horn, R Lutz, V Milan, M Sameki, H Wallach, ...
Microsoft, Tech. Rep. MSR-TR-2020-32, 2020
3552020
Efficient Optimal Learning for Contextual Bandits
M Dudik, D Hsu, S Kale, N Karampatziakis, J Langford, L Reyzin, T Zhang
UAI 2011, 2011
3492011
Performance guarantees for regularized maximum entropy density estimation
M Dudik, SJ Phillips, RE Schapire
International Conference on Computational Learning Theory, 472-486, 2004
3142004
Correcting sample selection bias in maximum entropy density estimation
M Dudık, RE Schapire, SJ Phillips
Advances in neural information processing systems 17, 323-330, 2005
3062005
Maximum entropy density estimation with generalized regularization and an application to species distribution modeling
M Dudík, SJ Phillips, RE Schapire
Journal of Machine Learning Research 8, 1217-1260, 2007
2762007
Fair Regression: Quantitative Definitions and Reduction-based Algorithms
A Agarwal, M Dudík, ZS Wu
ICML 2019, 2019
2602019
Provably efficient RL with rich observations via latent state decoding
SS Du, A Krishnamurthy, N Jiang, A Agarwal, M Dudík, J Langford
ICML 2019, 2019
2502019
Off-policy evaluation for slate recommendation
A Swaminathan, A Krishnamurthy, A Agarwal, M Dudik, J Langford, ...
Advances in Neural Information Processing Systems 30, 2017
2182017
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